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首页> 外文期刊>Multi-Scale Computing Systems, IEEE Transactions on >Adaptive and Personalized Gesture Recognition Using Textile Capacitive Sensor Arrays
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Adaptive and Personalized Gesture Recognition Using Textile Capacitive Sensor Arrays

机译:使用纺织电容式传感器阵列的自适应个性化手势识别

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摘要

Upper extremity mobility impairment is a common sequel of Spinal Cord Injury (SCI), brain injury, strokes, and degenerative diseases such as Guillain-Barré and ALS. Existing assistive technology solutions that provide access as user input devices are intrusive and expensive, and require physical contact that can have deleterious effects such as skin friction injury for paralyzed users who have reduced skin sensitivity. To address this problem, in this paper, we present the design, implementation, and evaluation of a non-contact proximity gesture recognition system using fabric capacitive sensor arrays. The fabric sensors are lightweight, flexible, and can be easily integrated into items of quotidian use such as clothing, bed sheets, and pillow covers. Our gesture recognition algorithm builds on two known classification techniques, Hidden Markov Model and Dynamic Time Warping to convert raw capacitance values to alphanumeric gestures. Our system is personalized to the user, allowing personalized selection of gesture sets and definition of gesture patterns in accordance with their capabilities. Our system adapts to changes in sensor configuration and orientation with minimal user training and intervention. We have evaluated our system in the context of a gesture-driven home automation system on six subjects that includes an individual who has a C6 Spinal Cord injury. We show that our system can recognize gestures of varying complexity with an average accuracy of 99 percent with minimal training.
机译:上肢活动能力减退是脊髓损伤(SCI),脑损伤,中风和退化性疾病(如格林-巴雷和ALS)的常见后遗症。现有的辅助技术解决方案在用户输入设备提供访问权限时是侵入性的且昂贵的,并且需要物理接触,该物理接触可能具有有害影响,例如,对于瘫痪的,皮肤敏感性降低的用户而言,皮肤摩擦受伤。为了解决这个问题,在本文中,我们介绍了使用织物电容传感器阵列的非接触式接近手势识别系统的设计,实现和评估。织物传感器轻巧,灵活,可以轻松地集成到日常使用的物品中,例如衣物,床单和枕头套。我们的手势识别算法以两种已知的分类技术为基础,即隐马尔可夫模型和动态时间规整,可将原始电容值转换为字母数字手势。我们的系统对用户是个性化的,允许个性化选择手势集并根据其功能定义手势模式。我们的系统通过最少的用户培训和干预即可适应传感器配置和方向的变化。我们在一个手势驱动的家庭自动化系统的背景下评估了我们的系统,该系统涉及六个对象,其中包括一个C6脊髓受伤的人。我们展示了我们的系统可以通过最少的训练就能识别出复杂程度不同的手势,平均准确率达到99%。

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